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arxiv: 1605.00775 · v1 · pith:OFDSICZKnew · submitted 2016-05-03 · 💻 cs.CV · q-bio.PE· q-bio.QM

Spatially Aware Dictionary Learning and Coding for Fossil Pollen Identification

classification 💻 cs.CV q-bio.PEq-bio.QM
keywords codingfossilpollenclassificationdictionaryduringexemplarfunction
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We propose a robust approach for performing automatic species-level recognition of fossil pollen grains in microscopy images that exploits both global shape and local texture characteristics in a patch-based matching methodology. We introduce a novel criteria for selecting meaningful and discriminative exemplar patches. We optimize this function during training using a greedy submodular function optimization framework that gives a near-optimal solution with bounded approximation error. We use these selected exemplars as a dictionary basis and propose a spatially-aware sparse coding method to match testing images for identification while maintaining global shape correspondence. To accelerate the coding process for fast matching, we introduce a relaxed form that uses spatially-aware soft-thresholding during coding. Finally, we carry out an experimental study that demonstrates the effectiveness and efficiency of our exemplar selection and classification mechanisms, achieving $86.13\%$ accuracy on a difficult fine-grained species classification task distinguishing three types of fossil spruce pollen.

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